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Positive Feedbacks in Global Biogeochemistry: Methane Emissions from Freshwater
Lakes
BIOS 569: Practicum in Field Biology
Michael Kipp
Advisor: William West
2013
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Abstract
Emissions of CH4 from freshwater lakes may contribute 6-16% of global non-anthropogenic CH4, more than oceanic emissions. With freshwater lakes missing from many atmospheric circulation models, there is a need to quantify their potential climate impact. A positive feedback in the global climate has been observed, with CH4 emissions increasing from lakes as they warm. The mechanism involves both an increased production of CH4 in the littoral sediments, and increased diffusive efflux from warm surface water. Methane cycles in lakes were characterized over the course of a summer, and drivers of emissions were determined. Methane production, methane storage, and lake surface area to volume ratio were determined to be reliable predictors of CH4 emissions. Additionally, a strong correlation exists between nutrient levels and emissions. This implicates anthropogenic lake eutrophication as an amplifier of existing global change mechanisms. These findings have implications for both existing lakes in temperate zones, and newly forming lakes and wetlands at higher latitudes. Introduction
Methane (CH4) is recognized as a potent greenhouse gas (GHG), with a radiative
forcing 21-25 times greater than carbon dioxide (CO2) (Rodhe 1990, Cicerone &
Oremland 1988). As the most abundant organic molecule in the atmosphere, CH4 has the
ability to act as a driver of significant climatic change (Cicerone 1988). Ice core data has
revealed a tight correlation between atmospheric CH4 levels and global temperature
oscillations, indicating the importance of this gas in controlling the dynamic climate of
Earth (Raynaud 1988, Stauffer 1988). Despite the evident importance of CH4 in global
climate regulation, much is still unknown about mechanisms controlling CH4 flux to the
atmosphere from continental sinks, such as wetlands and freshwater lakes (Bastviken
2004). Freshwater lakes are estimated to contribute 6-16% of global natural (non-
anthropogenic) CH4 emissions, which is more than oceanic emissions (Bastviken 2004).
However, CH4 efflux from freshwater lakes remains absent from many general
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circulation models. Given this dearth of knowledge, the mechanisms governing CH4
biogeochemistry in freshwater lakes represent an important piece of information that will
be much needed in order to predict how methane from lakes will contribute to
atmospheric carbon budgets.
Methanogenic (methane-producing) archaea thrive in the anoxic sediments at the
bottom of stratified freshwater lakes (Whitman 2006). CH4 produced in the sediments
meets one of three fates: (1) some CH4 is retained in the hypolimnion by thermal
stratification during the summer and winter months, (2) a portion of methane
transitioning from the hypolimnion to the epilimnion is oxidized by methanotrophic
microbes. Recent estimates suggest that oxidation may consume as much as 80% of all
CH4 that is produced (Segers 1998, Bastviken 2008, Juutinen 2009)), and (3) a small
fraction of the CH4 produced in the anoxic sediment is diffusively emitted to the
atmosphere.
Methane enters the atmosphere from lakes by different mechanisms: diffusive
flux, ebullition flux, and aquatic vegetation-mediated flux are among the most prevalent.
Ebullition fluxes result in a direct bubbling of CH4 from the sediment into the
atmosphere, and may represent the most prevalent mechanism of gas transfer (Bastviken
2004). When CH4 enters the water column, it is emitted by diffusive flux. This process
occurs at the surface of the lake, and is determined by the exchange between water and
air, or piston velocity (Stumm and Morgan 1996, Cole and Caraco 1998). Transport via
aquatic vegetation is a mechanism that is not well understood at the present, but may
contribute significantly to CH4 emissions (Bastviken 2011).
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There is growing concern that anthropogenic warming of the Earth’s climate may
trigger biotic positive feedback loops, which could amplify the warming response and
dramatically alter global climate (Christensen 1993, Woodwell 1998, Walter & Heimann
2000). CH4 emissions from freshwater lakes could play a major role in such a feedback.
An increase in global mean temperature could offset the ‘metabolic balance’ of aquatic
ecosystems (Yvon-Durocher 2011, 2010). In freshwater lakes, methanogenesis and CH4
emissions may be primarily controlled by temperature (Christensen 1993, Yvon-
Durocher 2011). Under this scenario, warmer conditions will beget increased CH4
emissions, engaging the positive feedback loop.
To investigate the extent of biotic feedbacks in the context of a warming climate,
6 temperate freshwater lakes were studied over the course of 10 weeks. CH4 production,
storage, and emissions were quantified, and mechanisms underlying CH4
biogeochemistry were deduced using the data collected. Specifically, the ability of
production rates to predict emissions rates was investigated, as it is crucial in the
proposed feedback loop. The role of storage in the hypolimnion was examined, and rates
were reconciled among the three stages of methane cycling: production, storage, and
emissions. Nutrient levels were measured to infer the possibility of anthropogenic lake
eutrophication having an effect on the feedback loop.
Methods Experimental Design
Six freshwater lakes (Bolger, Crampton, Hummingbird, Morris, East Long and
West Long) at the University of Notre Dame Environmental Research Center – East,
Land O’Lakes, MI (UNDERC – East) were studied over the course of 10 weeks, from
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mid-May until late July. CH4 production, storage, and emissions rates were measured
throughout the study. Temperature and nutrient data was collected to observe drivers in
CH4 biogeochemistry.
Methanogenesis Rates
CH4 production was measured by extracting sediment slurries from the littoral
and pelagic zones of the study sites, and incubating the slurries at in situ lake
temperatures for 2 weeks. Vials were purged with N2 to create an anoxic environment,
and incubations took place in dark conditions, to replicate the in situ habitat. Gas
extractions from the headspace were performed at 1, 5, 9, and 14 days, and CH4
concentrations were measured on an Agilent 6890 Gas Chromatograph (GC) equipped
with a flame-ionizing detector (FID). CH4 production rates were inferred from the slope
of linear regression fits to the four time-point CH4 concentrations.
Methane Storage
Storage of CH4 in the lake was measured weekly by collecting water samples at
meter intervals to create vertical profiles of the lake. The observed CH4 concentrations
were appropriately scaled to deduce whole lake storage using bathymetric data (ESRI
2011). Rates were inferred by subtracting measurements from consecutive samples, and
dividing by the number of days elapsed between samples.
Methane Emissions
Static floating flux chambers were deployed on the surface of the sampled lakes
for 24-hour periods a total of 4 times throughout the study. Each lake had 8 chambers at
different sampling locations: 4 pelagic sites and 4 littoral sites. To determine total
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emissions rates from each chamber, CH4 concentrations within the chambers are
compared to atmospheric CH4 concentrations. The portion of emissions contributed to
diffusive efflux was estimated, and ebullition was calculated by difference (Bastviken
2004). Rates of diffusive CH4 efflux were calculated as follows: F = k(Cobs-Cequil) where k
is the mass transfer coefficient, or piston velocity, Cobs is the concentration of CH4
measured in the surface water, and Cequil is the CH4 concentration expected if the lake
were in equilibrium with the atmosphere. k600 was estimated for each chamber based on
empirical relationships observed for lake emissions of SF6 and the appropriate Schmidt
numbers (Cole and Caraco 1998), as well as observations from the chambers (Cole et al.,
2010).
To determine which flux chambers contained ebullition, all chambers on a
specific date were divided by the k600 of the chamber with the lowest value (Fig 2). Any
chamber with a k600 ratio greater than two experienced a significant contribution of CH4
via ebullition (Bastviken et al., 2004).
Statistical Analysis
Linear regression was used to compare methanogenesis rates to CH4 storage and
CH4 emissions rates across all lakes. Methane storage over time was plotted on a linear
regression; CH4 emissions over time, and a comparison of CH4 storage and CH4
emissions rates utilized logistic regression. In order to determine the exact stratification
of the lakes over time, the second derivative method was used to calculate the extent of
the of the hypolimnion (Fig 1). A logistic regression was used to assess the relationship
between temperature and whole lake emissions. A One-Way Repeated Measures ANOVA
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indicated the differing trends in pelagic and littoral emissions as a function of
temperature.
Linear regressions were run to determine effects of nutrients (DOC, chlorophyll, P) on
emissions rates. Multiple Linear Regression was utilized to assess the effects of different
driver variables on CH4 emissions. All statistical analyses were conducted in the R
statistical environment (R Development Core Team, 2008).
Results
When scaled to encompass whole-lake scales, lakes that produced more CH4 also
stored and emitted more CH4 (Fig 3). A linear increase in CH4 storage was observed over
time, supporting the idea that these lakes may not reach CH4 saturation during the
summer months (Fig 4a). CH4 emissions increased steadily in the early weeks of the
summer, but leveled off at the end. This shows a shift from emissions to storage over the
course of the summer, with a greater proportion of total produced CH4 being stored later
in the summer (Fig 4b-c).
The steady increase in total mass of CH4 stored in the water column over the
course of the summer can be attributed to two factors: (1) the correlation between
production and storage (Fig 3), and (2) the process of thermal stratification. Consistent
production throughout the summer builds the store of CH4 in the lake. Also, as
temperatures increase lakes stratify more rigidly, and can retain more CH4.
Emission of CH4 into the atmosphere is the primary concern when discussing
global climate. A strong correlation was observed between increasing temperatures and
CH4 emissions (Fig 5). The trend was logarithmic, and leveled off toward the end of the
summer. This too is likely a product of rigid thermal stratification. Thus, warming does
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not cause a runaway increase in CH4 emissions throughout the summer. However,
warmer temperatures will cause the diffusive flux of CH4 to increase, because the
solubility of gases in surface waters will decrease (Yamamoto 1976). This may be of
relevance in assessing the climatic impact of CH4 emissions in a warming environment.
Emissions of CH4 increased more in the littoral zone than pelagic zone, which is
expected due to the surface water of the littoral zone warming more quickly than in the
pelagic. Not only does the warmer water elicit diffusive efflux of CH4, but it also
catalyzes methanogenesis, which is largely a temperature-dependent metabolism (Yvon-
Durocher 2011). The increased CH4 production in littoral zones supplements the
increased diffusive efflux, resulting in a large littoral emissions spike in warmer
temperature.
Nutrients were quantified in order to follow up on previous questions of previous
research about eutrophication and CH4 emissions. Phosphorous and chlorophyll
significantly increased CH4 emissions, echoing previous literature (Fig 6) (West 2012).
Dissolved organic carbon (DOC) did not show any significant correlation with emissions,
though a trend existed that might be of greater relevance than asserted by statistical
analysis.
A general linear model was created that accounted for a large portion of the
observed trend of CH4 emissions (R2=.6964) (Table 1). Methane production, storage, and
lake surface to volume ratio were predictive of emissions (p < 1.66 x 10-6, df = 3, 22).
Discussion
The Intergovernmental Panel on Climate Change (IPCC) predicts increases in
global mean temperature of about 2°C by the end of the century, though in northern
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latitudes this estimate is 4-5°C (IPCC 2007). The atmosphere-ocean general circulation
models (AOGCMs) used to make these predictions fail to account for biotic sources of
methane in freshwater lakes, let alone the changes to their activity in a warming climate.
Such an understanding is necessary when making predictions of such magnitude.
The data indicate a positive feedback loop in global biogeochemistry in the flux
of CH4 through freshwater lake ecosystems. Corroborating previous research,
temperature was found to be the driving force of CH4 efflux when other factors are equal
(Fig 5) (Yvon-Durocher 2011). Temperature differentially affects the littoral zone of
large lakes, because the shallow waters warm in response to atmospheric temperature.
Increased CH4 production in littoral sediments, provoked by higher temperatures, is the
most probable mechanism for the observed increase in emissions. However, the
simultaneous increase in pelagic zone emissions, highly correlated with surface water
temperature, suggests that advective processes may provoke increased diffusive
emissions from the surface of the entire lake. Warming of surface waters decreases the
solubility of CH4, thus increasing diffusive efflux from the lake (Yamamoto 1976). The
increased littoral production and whole-lake diffusive efflux work in conjunction
resulting in a higher emissions scenario in warmer climates.
Thermal stratification serves as a barrier to diffusive emissions in the pelagic
zone, causing an increasing portion of produced CH4 to be stored in the hypolimnion
rather than emitted as the temperature increases throughout the summer (Fig 4c). While
this may inhibit a runaway positive feedback with emissions, steady increases in both
pelagic and littoral emissions continued throughout the summer (Fig 5). This is because
of increased diffusive emissions. In addition, CH4 that is stored in the lake is released into
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the atmosphere during spring melt and fall mixing (Michmerhuizen, et al. 1996, Riera, et
al. 1999). Thus, if global warming causes longer warm seasons, a build up on methane in
the lake will ultimately result in a greater atmospheric impact during fall turnover.
Furthermore, a longer warm season may induce lakes to reach CH4 saturation, which
would likely increase the rate of emissions significantly. Such a phenomenon was not
observed in this study, but is a possibility if global mean temperature continues to rise.
In order to further analyze the net ecosystem impact of a warming climate, long-
term research must be done at inland lake sites. That is the only way to directly observe
the effects of changing driver variables on the processes of CH4 production, storage, and
emissions. Oxidation of CH4 in the water column is likely a very important part of the
cycle that was not within the scope of this study, but has the potential to be of great
concern in moderating the atmospheric impact of CH4 emissions (Bastviken 2008,
Juutinen 2009).
Temperature alone does not control CH4 dynamics – anthropogenic activity may
drive CH4 production in lakes by other mechanisms as well. The strong correlations
between nutrients (chlorophyll and phosphorous) and methane emissions suggest that
anthropogenic eutrophication of lakes may enhance the positive feedback loop that exists
in aquatic biogeochemistry. With increased run-off of nutrient rich substrates causing a
global browning and greening of lakes (Smith 2003), the anoxic layer of the lakes
receives more of the raw materials necessary to stimulate microbial metabolism (West
2012). Algal blooms, fertilizer run-off, and diverted water flow may all exacerbate the
warming situation already present in freshwater lakes.
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The initial positive feedback within lake ecosystems will likely be dwarfed by the
impact of rapidly increasing lake and wetland area as warmer climates shift to higher
latitudes. CH4 that is stored in frozen lakes may be released, and CH4 producing
environments may be reignited. Receding glaciers create kettle lake and bog
environments that are ripe for methane production. Nutrients frozen in permafrost may
thaw and leach into lakes via groundwater, contributing to eutrophication (Jorgensen and
Osterkamp 2005). Wetlands that feature a large surface area to volume ratio will have the
greatest output of methane (Table 1). With nearly 200,000 lakes occurring in the
northernmost 50° latitude, the potential for positive feedback is massive (Lehner and Döll
2004). As the human influence on global climate continues, a better understanding of the
dynamics governing the biogeochemistry of CH4 within lakes is imperative.
Conclusion
A positive feedback loop exists involving the emission of CH4 from freshwater
lakes. The mechanism of the feedback loop is both increased total CH4 production, and
increased rate of instantaneous diffusive emissions. A significant output of CH4 may
come at the fall turnover, especially if a long warm season creates a vast store of CH4 in
the lake. Anthropogenic eutrophication of lakes has the potential to amplify this cycle.
The best predictors of total CH4 emissions are total CH4 production and storage, as well
as surface to volume ratio. Further studies should examine the role of CH4 oxidation as
part of the methane cycle within warming lakes.
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Tables Table 1. General Linear Model predicting total CH4 emissions.
Adjusted R2 = .6964, p < 1.66 x 10-6, df = 3, 22
Standard Error T value P value
Surface Area to Volume Ratio 9.991 x 109 3.682 < .00131
Total CH4 Storage 1.252 x 10-3 2.974 < .00701
Total CH4 Production 6.976 x 10-2 3.267 < .00353
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Figures
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Figure 1. Derivative method for calculating thermocline. (a) The thermal gradient of West Long Lake on 7/14/2013. (b) The rate of change (first derivative) of the temperature, plotted against the depth of the lake. (c) The acceleration (second derivative) of temperature, plotted against depth. The maximum and minimum values of the second derivative yield the lower and upper boundaries of the metalimnion, respectively. Any depth below the maximum in considered hypolimnion, and any depth above the minimum is considered epilimnion.
k600 Ratio
Frequency
0 2 4 6 8 10
010
2030
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Figure 2. Dividing k600 values for each flux chamber by the lowest k600 value for each lake and date revealed the portion of chambers that experienced ebullition. 15% of chambers experienced ebullition, and were withheld from data analysis involving diffusive emissions.
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(a)
Total Methane Production (umol d-1)
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Figure 3. Linear regression of total CH4 production versus total CH4 storage and total CH4 emissions showed direct correlations. Total CH4 production was calculated in each sample lake twice over the course of the study. These values were compared to (a) total CH4 storage in each of the lakes, and (b) total CH4 emissions from each of the lakes. Values were averaged from multiple sites at each lake (df=1,6; n=8).
(a) (b)
Figure 4. Regression of CH4 storage over time showed a linear relationship, emissions over time showed a logistic pattern. (a) Total CH4 storage was calculated at each sample lake over the course of the study, and averages across all lakes were plotted against time. (b) CH4 emissions rates increased logistically over the course of the study, and began to level off as thermal stratification strengthened. (c) Setting the y-axes of (a) and (b) equal yields the relationship between storage and emissions. Lakes that emit much CH4 tend to store little, and vice-versa. The trend holds true across different lakes over the 10 weeks of the study.
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R² = 0.57861 �
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Figure 5. Methane emissions increased across all lakes in general as a function of surface water temperature. The temperature increase differentially affected littoral zones more than pelagic zones. The emissions for each sample lake were averaged, and all lakes were averaged together to observe the general trend (n=48). A One-Way Repeated Measures ANOVA revealed significant relationships between location (pelagic vs. littoral) (p < .008) and temperature on all emissions (p < 7 x 105).
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Acknowledgements The author would like to thank the Bernard J. Hank Family Endowment and University of Notre Dame for funding this project, the instructors and students of the UNDERC 2013 class, namely Celeny Rios, Trout Lake Research Station of the University of Wisconsin and finally Will West for being brilliant mentor on this research, seeing it through from experimental design to statistical analysis.
log(Total Phosphorous (ug L-1))
log(
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hane
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issi
ons
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)
2.5 3.0 3.5
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log(Chlorophyll (ug L-1))
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ons
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R2 = 0.6353p = 0.03566
(a) (b)
Figure 6. Total Phosphorous (a) and chlorophyll (b) each showed significant correlations with CH4 emissions. Dissolved organic carbon did not show a significant correlation. The trends verify hypotheses about effects of eutrophication on CH4 emissions.
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